Internal representations of the environment are often invoked to explain performance in tasks in which an organism must make a detour around an obstacle to reach a target and the organism can lose sight of the target along the path to the target. By simulating a detour task in evolving populations of robots (Khepera) we show that neural networks with memory units perform better than networks without memory units in this task. However, the content of the memory units need not be interpreted as an internal representation of the position of target. The memory units send a time-varying internally generated input to the network’s hidden units that allows the network to generate the appropriate behavior even when there is no external input. Netwo...
Modular neural networks have a number of advantages when used to control robots. They reduce the num...
In this paper 1 , the processes of exploration and of incremental learning in the robot navigatio...
This dissertation focuses on the evolution of Continuous Time Recurrent Neural Networks (CTRNNs) as ...
Internal representations of the environment are often invoked to explain performance in tasks in whi...
To be useful in psychology "artificial organisms" have to perform tasks comparable to those performe...
This paper explores the possibility of providing robots with an 'inner world' based on internal simu...
ARTICLE IN PRESS www.elsevier.com/locate/neucom This paper explores the possibility of providing rob...
Based on a neuroscientific hypothesis, this paper explores the possibility of an ‘inner world’ based...
Abstract—Navigation in time-evolving environments with mov-ing targets and obstacles requires cognit...
In the study of embodied... In this paper, we evolve neural controllers for nine different simulated...
Using evolutionary simulations we develop autonomous agents controlled by articial neural networks ...
Congress on Evolutionary Computation. Washington, DC, 6-9 July 1999.Neural networks (NN) can be used...
Mammalian spatial navigation systems utilize several different sensory information channels. This in...
The extent to which an organism’s morphology may shape its behaviour is increasingly studied, but st...
In this study we investigate the time-evolution of the activity in a topographically ordered neural ...
Modular neural networks have a number of advantages when used to control robots. They reduce the num...
In this paper 1 , the processes of exploration and of incremental learning in the robot navigatio...
This dissertation focuses on the evolution of Continuous Time Recurrent Neural Networks (CTRNNs) as ...
Internal representations of the environment are often invoked to explain performance in tasks in whi...
To be useful in psychology "artificial organisms" have to perform tasks comparable to those performe...
This paper explores the possibility of providing robots with an 'inner world' based on internal simu...
ARTICLE IN PRESS www.elsevier.com/locate/neucom This paper explores the possibility of providing rob...
Based on a neuroscientific hypothesis, this paper explores the possibility of an ‘inner world’ based...
Abstract—Navigation in time-evolving environments with mov-ing targets and obstacles requires cognit...
In the study of embodied... In this paper, we evolve neural controllers for nine different simulated...
Using evolutionary simulations we develop autonomous agents controlled by articial neural networks ...
Congress on Evolutionary Computation. Washington, DC, 6-9 July 1999.Neural networks (NN) can be used...
Mammalian spatial navigation systems utilize several different sensory information channels. This in...
The extent to which an organism’s morphology may shape its behaviour is increasingly studied, but st...
In this study we investigate the time-evolution of the activity in a topographically ordered neural ...
Modular neural networks have a number of advantages when used to control robots. They reduce the num...
In this paper 1 , the processes of exploration and of incremental learning in the robot navigatio...
This dissertation focuses on the evolution of Continuous Time Recurrent Neural Networks (CTRNNs) as ...